Django query profiler - one profiler to rule them all. Shows queries, detects N+1 and gives recommendations on how to resolve them

Overview

Django Query Profiler

https://travis-ci.com/django-query-profiler/django-query-profiler.svg?branch=master https://codecov.io/gh/django-query-profiler/django-query-profiler/branch/master/graph/badge.svg?token=1Cv7WsOi2W https://readthedocs.org/projects/django-query-profiler/badge/?version=latest https://img.shields.io/pypi/djversions/django-query-profiler

This is a query profiler for Django applications, for helping developers answer the question "My Django code/page/API is slow, How do I find out why?"

Below are some of the features of the profiler:

  1. Shows code paths making N+1 sql calls: Shows the sql with stack_trace which is making N+1 calls, along with sql count
  2. Shows the proposed solution: If the solution to reduce sql is to simply apply a select_related or a prefetch_related, this is highlighted as a suggestion
  3. Shows exact sql duplicates: Count of the queries where (sql, parameters) is exactly the same. This is the kind of sql where implementing a query cache would help
  4. Flame Graph visualisation: Collects all the stack traces together to allow quickly identifying which area(s) of code is causing the load to the database
  5. Command line or chrome plugin: The profiler can be called from command line via context manager, or can be invoked via a middleware, and output shown in a chrome plugin
  6. Super easy to configure in any application: The only changes are in settings.py file and in urls.py file

This is the repo for the chrome plugin

Requirements

This works with any version of django >= 2.0, and running on python >= 3.6

Profiler in Action

as a chrome plugin

This image shows how the chrome plugin would display profiled data, once it is configured & installed

https://raw.githubusercontent.com/django-query-profiler/django-query-profiler/master/docs/_static/django_query_profiler_in_action.gif

on command line

See this file in the PR to see how to use the context manager, and how easy it is to find performance issues :-)

The output of Django query profiler is same for the command line or the chrome plugin. In fact, chrome plugin displays the output set by the middleware - which is just a plain wrapper around context manager.

Getting Started

installation

The simplest way to getting started is to install the django query profiler from pip, and get the chrome plugin from chrome web store.

Python package:

pip install django-query-profiler

Chrome Plugin:

Download from chrome webstore

This is covered in detail in the installation section in the docs

configuration:

This configuration is when we want to use the profiler along with the chrome plugin. If we want to just use it on the command line, the configuration is much more simpler (two lines of change to settings.py file) - that is covered in the docs

settings.py:

from django_query_profiler.settings import *

INSTALLED_APPS = (
    ...
    'django_query_profiler',
    ...
)

MIDDLEWARE = (
    ...
     # Request and all middleware that come after our middleware, would be profiled
    'django_query_profiler.client.middleware.QueryProfilerMiddleware',
    ...
)

DATABASES = (
    ...
    # Adding django_query_profiler as a prefix to your ENGINE setting
    # Assuming old ENGINE was "django.db.backends.sqlite3", this would be the new one
    "ENGINE": "django_query_profiler.django.db.backends.sqlite3",
)

urls.py:

# Add this line to existing urls.py
path('django_query_profiler/', include('django_query_profiler.client.urls'))

See this PR on how to configure this in your application, and how the plugin is going to look like after your configuration

https://raw.githubusercontent.com/django-query-profiler/django-query-profiler/master/docs/_static/chrome_plugin.png

This is covered in detail in the configuration instructions section in the docs

How the profiler works

This is also covered in detail in the documentation at how the profiler works section in the docs, along with how the code is organized.

The docs also contain references to various links which helped us to lear about internals of Django, and to various projects which helped us to learn on how to add hooks when Django executes a query

Choosing Profiler levels

We have two levels of profiler, and each of them have a different overhead. The two levels are:

  1. QUERY_SIGNATURE: This is the mode where we capture the query as well as the stack-trace. This mode figures out the N+1 code paths and also tells us the proposed solution
  2. QUERY: This is the mode where we just capture queries, and not the stack-trace

On an average, QUERY_SIGNATURE level adds an overhead of 1 millisecond per 7 queries, and QUERY_SIGNATURE adds an overhead of 1 millisecond per 25 queries.

It is simple to change the profiler level for all the requests, or can be configured per request. This is covered in the choosing profiler level section of the docs

Customizing the profiler

We have tried to make the profiler customizable by providing hooks at various points. Some of the use cases are covered here in the customizing the defaults section in docs.

We plan to add more hooks for customizing the profiler as we gather more feedback from real world use cases.

For contributors

https://img.shields.io/badge/PRs-welcome-brightgreen.svg?style=flat-square

The django query profiler is released under the BSD license, like Django itself.

If you like it, please consider contributing! The docs cover everything from how to setup locally, to how the code is organized to running tests.

Documentation

Full documentation is available at readthedocs

Owner
Django Query Profiler
Contact us at [email protected]
Django Query Profiler
PerfSpect is a system performance characterization tool based on linux perf targeting Intel microarchitectures

PerfSpect PerfSpect is a system performance characterization tool based on linux perf targeting Intel microarchitectures. The tool has two parts perf

Intel Corporation 139 Dec 30, 2022
Python compiler that massively increases Python's code performance without code changes.

Flyable - A python compiler for highly performant code Flyable is a Python compiler that generates efficient native code. It uses different techniques

Flyable 35 Dec 16, 2022
guapow is an on-demand and auto performance optimizer for Linux applications.

guapow is an on-demand and auto performance optimizer for Linux applications. This project's name is an abbreviation for Guarana powder (Guaraná is a fruit from the Amazon rainforest with a highly ca

Vinícius Moreira 19 Nov 18, 2022
Shrapnel is a scalable, high-performance cooperative threading library for Python.

This Python library was evolved at IronPort Systems and has been provided as open source by Cisco Systems under an MIT license. Intro Shrapnel is a li

216 Nov 06, 2022
This tool allows to gather statistical profile of CPU usage of mixed native-Python code.

Sampling Profiler for Python This tool allows to gather statistical profile of CPU usage of mixed native-Python code. Currently supported platforms ar

Intel Corporation 13 Oct 04, 2022
Pearpy - a Python package for writing multithreaded code and parallelizing tasks across CPU threads.

Pearpy The Python package for (pear)allelizing your tasks across multiple CPU threads. Installation The latest version of Pearpy can be installed with

MLH Fellowship 5 Nov 01, 2021
A low-impact profiler to figure out how much memory each task in Dask is using

dask-memusage If you're using Dask with tasks that use a lot of memory, RAM is your bottleneck for parallelism. That means you want to know how much m

Itamar Turner-Trauring 23 Dec 09, 2022
Pyccel stands for Python extension language using accelerators.

Pyccel stands for Python extension language using accelerators.

Pyccel 242 Jan 02, 2023
Django query profiler - one profiler to rule them all. Shows queries, detects N+1 and gives recommendations on how to resolve them

Django Query Profiler This is a query profiler for Django applications, for helping developers answer the question "My Django code/page/API is slow, H

Django Query Profiler 116 Dec 15, 2022
Cinder is Instagram's internal performance-oriented production version of CPython

Cinder is Instagram's internal performance-oriented production version of CPython 3.8. It contains a number of performance optimizations, including bytecode inline caching, eager evaluation of corout

Facebook Incubator 2.2k Dec 30, 2022
Silky smooth profiling for Django

Silk Silk is a live profiling and inspection tool for the Django framework. Silk intercepts and stores HTTP requests and database queries before prese

Jazzband 3.7k Jan 01, 2023
Rip Raw - a small tool to analyse the memory of compromised Linux systems

Rip Raw Rip Raw is a small tool to analyse the memory of compromised Linux systems. It is similar in purpose to Bulk Extractor, but particularly focus

Cado Security 127 Oct 28, 2022
Sampling profiler for Python programs

py-spy: Sampling profiler for Python programs py-spy is a sampling profiler for Python programs. It lets you visualize what your Python program is spe

Ben Frederickson 9.5k Jan 01, 2023